论文标题
Airrl:一种增强城市空气质量推理的学习方法
AirRL: A Reinforcement Learning Approach to Urban Air Quality Inference
论文作者
论文摘要
城市空气污染已成为威胁公共卫生的主要环境问题。根据现有的监测站,推断出细粒度的城市空气质量已经变得越来越重要。挑战之一是如何有效地选择一些相关的站点进行空气质量推断。在本文中,我们提出了一种基于城市空气质量推断的强化学习的新型模型。该型号由两个模块组成:一个电台选择器和空气质量回归器。电台选择器在推断空气质量时会动态选择最相关的监视站。空气质量回归器接收选定的电台,并通过深层神经网络进行空气质量推断。我们对现实世界中的空气质量数据集进行了实验,与几种流行解决方案相比,我们的方法达到了最高的性能,并且该实验在解决空气质量推断问题方面表现出重要的效率。
Urban air pollution has become a major environmental problem that threatens public health. It has become increasingly important to infer fine-grained urban air quality based on existing monitoring stations. One of the challenges is how to effectively select some relevant stations for air quality inference. In this paper, we propose a novel model based on reinforcement learning for urban air quality inference. The model consists of two modules: a station selector and an air quality regressor. The station selector dynamically selects the most relevant monitoring stations when inferring air quality. The air quality regressor takes in the selected stations and makes air quality inference with deep neural network. We conduct experiments on a real-world air quality dataset and our approach achieves the highest performance compared with several popular solutions, and the experiments show significant effectiveness of proposed model in tackling problems of air quality inference.